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一种基于机器学习的表面增强拉曼散射分析平台,用于无标记检测和识别胃部病变。

A Machine Learning-Driven Surface-Enhanced Raman Scattering Analysis Platform for the Label-Free Detection and Identification of Gastric Lesions.

作者信息

Chen Fengsong, Huang Yanhua, Qian Yayun, Zhao Ya, Bu Chiwen, Zhang Dong

机构信息

Department of Gastroenterology, Haimen People's Hospital, Nantong, 226000, People's Republic of China.

Institute of Translational Medicine, Medical College, Yangzhou University, Yangzhou, 225001, People's Republic of China.

出版信息

Int J Nanomedicine. 2024 Sep 10;19:9305-9315. doi: 10.2147/IJN.S471392. eCollection 2024.

Abstract

BACKGROUND

Gastric lesions pose significant clinical challenges due to their varying degrees of malignancy and difficulty in early diagnosis. Early and accurate detection of these lesions is crucial for effective treatment and improved patient outcomes.

METHODS

This paper proposed a label-free and highly sensitive classification method for serum of patients with different degrees of gastric lesions by combining surface-enhanced Raman scattering (SERS) and machine learning analysis. Specifically, we prepared Au lotus-shaped (AuLS) nanoarrays substrates using seed-mediated and liquid-liquid interface self-assembly method for measuring SERS spectra of serum, and then the collected spectra were processed by principal component analysis (PCA) - multi-local means based nearest neighbor (MLMNN) model to achieve differentiation.

RESULTS

By employing this pattern analysis, AuLS nanoarray substrates can achieve fast, sensitive, and label-free serum spectral detection. The classification accuracy can reach 97.5%, the sensitivity is higher than 96.7%, and the specificity is higher than 95.0%. Moreover, by analyzing the PCs loading plots, the most critical spectral features distinguishing different degrees of gastric lesions were successfully captured.

CONCLUSION

This discovery lays the foundation for combining SERS with machine learning for real-time diagnosis and recognition of gastric lesions.

摘要

背景

胃病变因其恶性程度不同且早期诊断困难而带来重大临床挑战。早期准确检测这些病变对于有效治疗和改善患者预后至关重要。

方法

本文通过结合表面增强拉曼散射(SERS)和机器学习分析,提出了一种针对不同程度胃病变患者血清的无标记且高灵敏度的分类方法。具体而言,我们采用种子介导和液 - 液界面自组装方法制备了金莲花状(AuLS)纳米阵列基底用于测量血清的SERS光谱,然后将收集到的光谱通过主成分分析(PCA) - 基于多局部均值的最近邻(MLMNN)模型进行处理以实现区分。

结果

通过采用这种模式分析,AuLS纳米阵列基底能够实现快速、灵敏且无标记的血清光谱检测。分类准确率可达97.5%,灵敏度高于96.7%,特异性高于95.0%。此外,通过分析主成分加载图,成功捕获了区分不同程度胃病变的最关键光谱特征。

结论

这一发现为将SERS与机器学习相结合用于胃病变的实时诊断和识别奠定了基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1fa7/11401524/152297b311c2/IJN-19-9305-g0001.jpg

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